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United States Retail Inventories Ex Autos

Price

0.4 %
Change +/-
+0.3 %
Percentage Change
+120.00 %

The current value of the Retail Inventories Ex Autos in United States is 0.4 %. The Retail Inventories Ex Autos in United States increased to 0.4 % on 3/1/2025, after it was 0.1 % on 2/1/2025. From 2/1/1992 to 3/1/2025, the average GDP in United States was 0.29 %. The all-time high was reached on 12/1/2021 with 3.8 %, while the lowest value was recorded on 12/1/2008 with -2.1 %.

Source: U.S. Census Bureau

Retail Inventories Ex Autos

  • 3 years

  • 5 years

  • 10 years

  • 25 Years

  • Max

Retail Inventory Excluding Autos

Retail Inventories Ex Autos History

DateValue
3/1/20250.4 %
2/1/20250.1 %
1/1/20250.5 %
11/1/20240.6 %
10/1/20240.3 %
9/1/20240.1 %
8/1/20240.6 %
7/1/20240.6 %
6/1/20240.3 %
5/1/20240.1 %
1
2
3
4
5
...
29

Similar Macro Indicators to Retail Inventories Ex Autos

NameCurrentPreviousFrequency
🇺🇸
Automobile production
10.354 M Units10.374 M UnitsMonthly
🇺🇸
Bankruptcies
23,107 Companies22,762 CompaniesQuarter
🇺🇸
Business Climate
48.7 points49 pointsMonthly
🇺🇸
Business Inventories
0.2 %0.3 %Monthly
🇺🇸
Capacity Utilization
77.8 %78.2 %Monthly
🇺🇸
CFNAI Employment Index
-0.01 points-0.02 pointsMonthly
🇺🇸
CFNAI Index for Personal Consumption and Housing
0.11 points0 pointsMonthly
🇺🇸
CFNAI Production Index
-0.09 %0.25 %Monthly
🇺🇸
CFNAI Sales, Order, and Inventory Index
-0.03 %0.01 %Monthly
🇺🇸
Changes in Inventory Levels
8.9 B USD57.9 B USDQuarter
🇺🇸
Chicago Fed National Activity Index
-0.03 points0.24 pointsMonthly
🇺🇸
Chicago PMI
44.6 points47.6 pointsMonthly
🇺🇸
Composite Leading Indicator
100.678 points100.68 pointsMonthly
🇺🇸
Composite PMI
50.6 points53.5 pointsMonthly
🇺🇸
Consistency Index
146.89 points146.56 pointsMonthly
🇺🇸
Corn Grain Reserves
8.15 B Bushels12.074 B BushelsQuarter
🇺🇸
Corporate profits
3.312 T USD3.129 T USDQuarter
🇺🇸
Dallas Fed Manufacturing Delivery Index
-5.5 points6.1 pointsMonthly
🇺🇸
Dallas Fed Manufacturing Employment Index
-3.9 points-4.6 pointsMonthly
🇺🇸
Dallas Fed Manufacturing Index
-35.8 points-16.3 pointsMonthly
🇺🇸
Dallas Fed Manufacturing Prices Paid Index
48.4 points37.7 pointsMonthly
🇺🇸
Dallas Fed Manufacturing Production Index
5.1 points6 pointsMonthly
🇺🇸
Dallas Fed New Order Index
-20 points-0.1 pointsMonthly
🇺🇸
Dallas Fed Service Sector Revenue Index
3.8 points27.3 pointsMonthly
🇺🇸
Dallas Fed Services Index
-19.4 points-11.3 pointsMonthly
🇺🇸
Durable Goods Orders
9.2 %0.9 %Monthly
🇺🇸
Durable Goods Orders Excluding Defense
10.4 %0.8 %Monthly
🇺🇸
Durable Goods Orders Excluding Transportation
0 %0.7 %Monthly
🇺🇸
Factory Orders
4.3 %0.5 %Monthly
🇺🇸
Factory Orders Excluding Transportation
-0.2 %0.3 %Monthly
🇺🇸
Grain Reserves Wheat
1.24 B Bushels1.57 B BushelsQuarter
🇺🇸
Industrial production
1.3 %1.5 %Monthly
🇺🇸
Industrial Production MoM
-0.3 %0.8 %Monthly
🇺🇸
ISM Manufacturing Backlog
46.8 points44.9 pointsMonthly
🇺🇸
ISM Manufacturing Deliveries
55.2 points53.5 pointsMonthly
🇺🇸
ISM Manufacturing Employment
46.5 points44.7 pointsMonthly
🇺🇸
ISM Manufacturing Inventory Levels
50.8 points53.4 pointsMonthly
🇺🇸
ISM Manufacturing Prices
69.8 points69.4 pointsMonthly
🇺🇸
ISM Manufacturing Production
44 points48.3 pointsMonthly
🇺🇸
ISM New Orders Manufacturing
47.2 points45.2 pointsMonthly
🇺🇸
ISM New Orders Non-Manufacturing
52.3 points50.4 pointsMonthly
🇺🇸
ISM Non-Manufacturing Business Activity
53.7 points55.9 pointsMonthly
🇺🇸
ISM Non-Manufacturing Employment
49 points46.2 pointsMonthly
🇺🇸
ISM Non-Manufacturing Prices
65.1 points60.9 pointsMonthly
🇺🇸
Kansas Fed Composite Index
-4 points-2 pointsMonthly
🇺🇸
Kansas Fed Employment Index
-11 points-4 pointsMonthly
🇺🇸
Kansas Fed Manufacturing Index
-5 points1 pointsMonthly
🇺🇸
Kansas Fed Manufacturing Index
-11 points-12 pointsMonthly
🇺🇸
Kansas Fed Manufacturing Index
-2 points-4 pointsMonthly
🇺🇸
Kansas Fed Paid Prices Index
42 points42 pointsMonthly
🇺🇸
Leading Indicator
100.5 points101.1 pointsMonthly
🇺🇸
LMI Logistics Manager Index Future
60.6 points60.6 pointsMonthly
🇺🇸
LMI Storage Costs
75.6 points70.6 pointsMonthly
🇺🇸
LMI Transport Prices
62.3 points56.4 pointsMonthly
🇺🇸
LMI Warehouse Prices
72.3 points61 pointsMonthly
🇺🇸
LMI-Logistics Manager Index
58.8 points57.1 pointsMonthly
🇺🇸
Manufacturing PMI
50.2 points50.2 pointsMonthly
🇺🇸
Manufacturing Production
1 %0.8 %Monthly
🇺🇸
Manufacturing Production MoM
0.3 %1 %Monthly
🇺🇸
Mining Production
1 %-0.2 %Monthly
🇺🇸
New Orders
618.833 B USD593.159 B USDMonthly
🇺🇸
NFIB Business Optimism Index
97.4 points100.7 pointsMonthly
🇺🇸
NY Empire State Employment Index
-2.6 points-4.1 pointsMonthly
🇺🇸
NY Empire State Manufacturing Index
-8.1 points-20 pointsMonthly
🇺🇸
NY Empire State Manufacturing Index
-8.8 points-14.9 pointsMonthly
🇺🇸
NY Empire State Manufacturing Index
-2.9 points-8.5 pointsMonthly
🇺🇸
NY Empire State Prices Paid Index
50.8 points44.9 pointsMonthly
🇺🇸
Orders for Capital Goods Excluding Defense and Aircraft
0.1 %-0.3 %Monthly
🇺🇸
Philadelphia Fed Manufacturing Index
-26.4 points12.5 pointsMonthly
🇺🇸
Philly Fed Business Climate
6.9 points5.6 pointsMonthly
🇺🇸
Philly Fed CAPEX Index
2 points13.4 pointsMonthly
🇺🇸
Philly Fed Employment
0.2 points19.7 pointsMonthly
🇺🇸
Philly Fed New Orders
-34.2 points8.7 pointsMonthly
🇺🇸
Philly Fed Prices Paid
51 points48.3 pointsMonthly
🇺🇸
PMI Non-Manufacturing Sector
51.6 points50.8 pointsMonthly
🇺🇸
Richmond Fed Manufacturing Index
-13 points-4 pointsMonthly
🇺🇸
Richmond Fed Manufacturing Shipments
-17 points-7 pointsMonthly
🇺🇸
Richmond Fed Services Index
-7 points-4 pointsMonthly
🇺🇸
Services PMI
50.8 points54.4 pointsMonthly
🇺🇸
Soybean Grain Reserves
1.91 B Bushels3.1 B BushelsQuarter
🇺🇸
Steel production
6.7 M Tonnes6 M TonnesMonthly
🇺🇸
Total Vehicle Sales
17.273 M 17.831 M Monthly
🇺🇸
Vehicle Registrations
287,600 219,800 Monthly
🇺🇸
Wholesale Inventory Levels
0.5 %0.5 %Monthly

What is Retail Inventories Ex Autos?

Retail Inventories Ex Autos: An In-Depth Analysis In the intricate world of macroeconomic data, understanding the various categories can significantly aid in deciphering economic trends and making informed decisions. Among these categories, "Retail Inventories Ex Autos" holds a crucial position. This metric pertains to the value of retail inventories excluding the automotive sector. For professionals and analysts venturing into macroeconomic analysis, this parameter offers invaluable insights into the overall health of the retail industry and the economy at large. This detailed description explores the significance, implications, and dynamics of Retail Inventories Ex Autos, providing readers with a comprehensive understanding of its role within the broader macroeconomic framework. To begin with, retail inventories represent the total value of goods held in stock by retailers. These goods range from household items and apparel to electronics and groceries. However, the "Retail Inventories Ex Autos" category specifically excludes inventories related to the automotive sector, comprising vehicles, parts, and related items. By isolating the automotive industry, this metric offers a clearer picture of inventory levels and trends within the broader retail sector. The exclusion of automotive inventories from this metric is intentional and important. The automotive sector is often subject to unique market dynamics that can obscure broader retail trends. For instance, automobile inventories are heavily influenced by factors such as manufacturing cycles, dealership agreements, and vehicle sales trends which can be highly volatile. By focusing solely on non-automotive retail inventories, analysts can gain a more stable and representative overview of inventory trends across other retail categories. This allows for a more nuanced understanding of consumer behavior and retail strategies. One of the key reasons for closely monitoring Retail Inventories Ex Autos is its direct correlation with consumer demand and retail sales. When retailers observe strong consumer demand, they are likely to increase their inventory levels to meet anticipated future sales. Conversely, rising inventories can indicate slowing demand, leading to concerns about overstocking and potential markdowns. Therefore, fluctuations in this metric can serve as a leading indicator of economic health and consumer confidence. Moreover, Retail Inventories Ex Autos offers insights into supply chain efficiency and retail management. Retailers strive to balance the need for adequate inventory to meet customer demand with the cost implications of holding excess stock. Efficient inventory management ensures that retailers can respond quickly to changes in demand without incurring unnecessary costs. Therefore, shifts in inventory levels can highlight challenges in the supply chain, including disruptions, delays, or inefficiencies. Furthermore, this metric plays a crucial role in GDP (Gross Domestic Product) calculations. Retail inventories form a part of the broader inventory investment data that contributes to the GDP calculation. Changes in inventory levels, including Retail Inventories Ex Autos, can impact the determination of GDP growth or contraction. A significant increase in inventories might suggest that goods are not selling as expected, potentially leading to a future reduction in production and overall economic slowdown. Conversely, decreasing inventories might indicate strong sales and potential future production increases to replenish stock. Retail Inventories Ex Autos also have implications for inflation monitoring and forecasting. Inventory levels can influence pricing strategies used by retailers. For example, high inventory levels may prompt retailers to reduce prices to clear excess stock, thereby contributing to lower inflation. Conversely, low inventory levels amidst strong demand can lead to price increases, contributing to inflationary pressures. Therefore, analyzing this metric can aid in predicting inflation trends and assisting policymakers in making informed decisions regarding monetary policy. Additionally, sectoral analysis benefits substantially from the Retail Inventories Ex Autos metric. Retail sectors such as clothing, electronics, household goods, and groceries each exhibit unique inventory characteristics and trends. By examining inventory data at a disaggregated level, analysts can gain insights into the performance and challenges facing specific retail sectors. This detailed understanding enables more targeted and effective decision-making for both businesses and policymakers. While Retail Inventories Ex Autos offer a wealth of insights, it is essential to interpret the data in conjunction with other economic indicators. Data on consumer spending, retail sales, and manufacturing output should be analyzed in tandem with inventory levels to draw comprehensive conclusions. Furthermore, external factors such as seasonal variations, economic policies, and global economic conditions can also influence inventory trends and should be considered in the analysis. At Eulerpool, we prioritize providing accurate and up-to-date macroeconomic data to help professionals make well-informed decisions. Our platform offers detailed and easily accessible data on Retail Inventories Ex Autos, alongside other crucial economic indicators. By leveraging our robust data resources, analysts, investors, and decision-makers can gain a deeper understanding of market dynamics and tailor their strategies accordingly. In conclusion, Retail Inventories Ex Autos is a critical metric in the realm of macroeconomic analysis. It provides essential insights into consumer demand, supply chain efficiency, inflation trends, and overall economic health. By excluding the automotive sector, this metric offers a more stable and representative view of the retail landscape. Thorough analysis of this parameter, in combination with other economic indicators, can significantly enhance the understanding of economic trends and inform effective decision-making strategies. At Eulerpool, our commitment to providing comprehensive and reliable data ensures that you have the tools necessary to navigate the complexities of macroeconomic analysis effectively.